A Non-Linear Voltammetry (NLV)-based method for charging batteries. It also relates to a fast charging system implementing this method. Adaptive charging, Non-Linear Voltage changing, and relaxation are the key cornerstones of this method. Adaptive charging allows the system to balance the charging based on the user's time requirements, required charge capacity and the SOC and SOH of the battery. Non-linearly changing the voltage coupled with a suitable relaxation pattern allows this method to gain the maximum charge capacity without straining the battery.
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1. A Non-Linear Voltammetry (NLV)-based method for charging a battery system, the method comprising iterations for charging the battery system, each iteration for charging including operations of:
setting the battery system to a certain charging-voltage value which is non-linearly changing and gradually increasing at iterations, during a variable iteration duration,
measuring a current being drawn by the battery system, to determine a time-derivative
of charge current and monitor a drop-rate of the current being drawn,
measuring temperature within the battery system,
applying a relaxation with charging kept on hold and at least substantially zero current to the battery system to stabilize with its new charge, whenever the measured temperature rises above a safety limit, for a time duration until resuming when an expected temperature range is secured, and
determining a next charging-voltage value for a next charging iteration, by applying for a previous iteration duration a time-derivative of voltage
that is calculated from the following equation:
where:
Kn is changed at iterations, based on a set of parameters including a state of Charge (SOC) and a state of health (SOH) of the battery system;
α is an adjustable constant, to match non-linear relations between current and voltage based on different types of battery, and
∂I/∂t is an average value of a time derivative of the drawn current during the previous charging iteration.
2. The NLV-based method for charging a battery system according to
3. The NLV-based method for charging a battery system according to
4. The NLV-based method for charging a battery system according to
5. A method of charging a battery system comprising:
charging the battery system by combining the Non-Linear Voltammetry (NLV)-based method according to
6. The method of charging a battery system according to
7. The NLV-based method for charging a battery system according to
8. The NLV-based method for charging a battery system according to
9. The NLV-based method for charging a battery system according to
10. The NLV-based method for charging a battery system according to
11. The NLV-based method for charging a battery system according to
12. A Non-Linear Voltammetry (NLV)-based system for charging a battery system, the battery charging system implementing a charging method according to
means for setting the battery system to a certain charging-voltage value which is non-linearly changing and gradually increasing at iterations, during a variable iteration duration,
means for measuring a current being drawn by the battery system, to determine a time-derivative
of charge current and monitor a drop-rate of the current being drawn,
means for measuring temperature within the battery system,
means for applying a relaxation with charging kept on hold and at least substantially zero current to the battery system to stabilize with its new charge, whenever the measured temperature rises above a safety limit, for a time duration until resuming when an expected temperature range is secured, and
means for determining a next charging-voltage value for a next charging iteration, by applying for a previous iteration duration a time-derivative of voltage
that is calculated from the following equation:
where:
Kn is changed at iterations, based on a set of parameters including a state of Charge (SOC) and a state of health (SOH) of the battery system;
α is an adjustable constant, to match non-linear relations between current and voltage based on different types of battery, and
∂I/∂t is an average value of a time derivative of the drawn current during the previous charging iteration.
13. The NLV-based system according to
14. The NLV-based system according to
15. The NLV-based system according to
16. The NLV-based system according to
17. The NLV-based system according to
18. The NLV-based system according to
19. The NLV-based system according to
20. The NLV-based system according to
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This application is a national phase entry under 35 U.S.C. § 371 of International Patent Application PCT/IB2018/059766, filed Dec. 7, 2018, designating the United States of America and published as International Patent Publication WO 2019/111226 A1 on Jun. 13, 2019, which claims the benefit under Article 8 of the Patent Cooperation Treaty to Singapore Patent Application Serial No. 10201710151Y, filed Dec. 7, 2017.
The present disclosure relates to a Non-Linear Voltammetry (NLV)-based method for charging batteries. It also relates to a fast charging system implementing this method.
“How to charge a battery faster?” is a question that was not fully answered for several decades since the inception of battery storage devices. More importantly charging a lithium-ion battery faster has become a critical concern due the rapid and massive use of mobile device technologies and the increasing demand on the electric vehicles (EVs) and plugin electric hybrid vehicles (PHEVs) in recent years due to the urgency to curb the air pollution caused by petroleum-dominant vehicles. Therefore, a fast charging solution for a Lithium-Ion battery in today's world is a billion-dollar worth innovation.
The aim of the present disclosure is to propose a new Non-Linear Voltammetry (NLV)-based charging protocol, which allows fast charging for batteries with improved performances compared to present constant current constant voltage (CCCV) fast charging technologies.
According to the present disclosure, the method for charging a battery system, comprises:
where
According to another aspect of the present disclosure, it is proposed a battery charging system comprising:
where
The battery system can comprise one cell or of a multi-cell system, and can be arranged in series and/or in parallel cell configuration.
The voltage of a cell is, for example, comprised between 2V and 5 V, and the charging current in a cell can be comprised between 0 and 10C (nC rate is defined as the constant charging current to enable a full charging time in
i. e. under 10C rate the charging time is
The cell temperature T can be comprised between −20° C. and +55° C. and the charging time tch from 0% SOC to 100% SOC is comprised between 10 minutes and 2 hours. The SOC can be comprised between 0% and 100% and the cycle number is 200<n<2000.
A Non-Linear Voltammetry (NLV)-based adaptive charging protocol (ACP) for fast charging lithium-ion battery was developed to charge a battery in about 10 minutes time. This is a combination of two fast charging methods that can be applied to any type of battery. It works as memory-less charging model as well as a memory-based charging model. If the historical data about the battery chemistry is available, this protocol automatically gets adjusted to make use of them to provide the best charging performance.
If it happens to charge a random battery, without any historic or specific data, a quick learning model about its ΔSOC will be fair enough to charge it quickly and safely. Not only that, it will also consider about the user's requirements and some system requirements (as and when it detects them) when adjusting its protocol for charging. Therefore, this can also be considered as a universal protocol to fast charging batteries.
Using this method, a battery can be fully charged in about 10 mins time. In average cases, it will charge the battery in about 22-24 minutes time. Through a cyclic test, it has proven that this charging protocol hasn't largely impacted on the capacity fading. Further, this could be a model for fast-charging any type of battery as the basis of this protocol is to let the battery charge with its' own favorable current at any point of time, depending on its ΔSOC and SOH.
Adaptive charging, Non-Linear Voltage changing, and Relaxation are the key cornerstones of this protocol. Adaptive charging allows the system to balance the charging based on the user's time requirements, required charge capacity and the SOC and SOH of the battery. Non-linearly changing the voltage coupled with a suitable relaxation pattern allows this method to gain the maximum charge capacity without straining the battery. As the cell impedance increases toward the end-of-discharge (EOD) [1], the protocol uses either a high-speed NLV steps or a configurable constant current (CC) charge at the starting SOC. If the system couldn't reach the expected charge at the end of the NLV based charging, the adaptive protocol will decide whether to get use of another CC charge to gain the balance capacity. Following summarizes the NLV charging:
The NLV-based charging protocol of the present disclosure can also be applied in combination with other fast charging protocols such as with Constant Current protocol (CC), Constant Current Constant Voltage protocol (CCCV) and with the Cascade Pulse Charging Protocol described in PCT application #PCTIB2018/059705.
These and other features and advantages of the present disclosure will become better understood with regards to the following description, appended claims, and accompanying drawings wherein:
This adaptive charging protocol (ACP) is based on non-linear voltammetry (NLV) based control over the period of charging a battery. It allows the battery to charge at an acceptable Current (Amps) amount at different Voltage levels based on its own state of health (SOH) and state of charge (SOC). Therefore, the amount of Current draws into the battery is never controlled or imposed by this protocol at any time.
Even it is predictable that a battery can be charged (more than 80%) in less than a 25 mins using this method, it may get elongated or shorten based on the health (SOH) of the battery at the time of charging. It also assures better safety compared to the other fast charging methods [2, 3, 5], which are mostly imposing the High-Current (I) in different patterns/wave forms. So, most importantly this ACP method does not strain the battery by drawing a large fixed-load of electrons through the cells without taking its health into consideration.
The equilibrium in kinetics of battery-particle dynamics, such as lithiation/de-lithiation (intercalation/de-intercalation), shooting/floating the ions/electrons through the solvents & separators, transporting charge against the internal impedance (IR) etc. [4, 6], determine how healthy the battery is?/how much of a Current can be taken/given by the battery-system at a time, during charging/discharging? It is believed that this equilibrium can be expressed as a relationship between the “Rate of the change, in Current
” and the “Rate of the change, in Voltage
” Therefore, the following relationship was used in forming up this protocol:
Further, the relationship for α=1 can be simplified as:
From the literature of Li-ion batteries, it is evident that the chemistries of the battery provide inherent characteristics on the voltage profiles. Within certain lower voltages (with low SOC), the cells tempt to draw a very low Current (due to high impedance) whereas in higher voltages (high SOC with lower polarization) the potential of drawing High Current is remarkably high [1]. Some cells have a very narrow frame of a Voltage-range where these High Currents could be tolerated. So, the fast charging should be applied to keep the battery in these ranges for a longer time, as much as possible, until the expected capacity (as much capacity as possible before the tolerable current drops below a certain lower level, which would elongate the total charge time) is gained during the charging process.
All examples given below are related to lithium ion batteries. However, ACP applies to all types of rechargeable batteries including, and not limited to Solid State Lithium, NiMH, NiCd, LAB, alkaline cells, NaS, NaNiCh, redox flow (ZnBr, VRB), . . . .
The “ACP on NLV” is meant for an Adaptive Charging Protocol (ACP) based on Non-Linear Voltammetry (NLV) charging. It is adaptive as the protocol adapts to several user-driven and system/battery-driven factors to adjust its own charging profile to better response to the given charging requirements. The user expected charging time (duration), expected percentage of charge (100%, 80% or 60% etc.), possible relaxation time and initial state of charge (SOC) are some of the user driven factors of the adaptation process. Identifying current SOC has also designed to be processed automatically using the entropy and enthalpy-based method, which comes as a system/battery driven factor as well. The state of the health (SOH), stated (nominal) capacity, safety voltage range, available accuracy of voltage control and polarization profile of the battery are some of the automatically detected/system driven factors.
During NLV charging, the battery cell set to a certain voltage (CV), which is non-linearly changing and gradually increasing at every step. Therefore, the battery is charged based on Non-Linear-Voltage (NLV) for a period over a series of quick charging steps.
During each of these steps, the cell draws a certain amount of Current based on both of its State of Charge (SOC) and State of Health (SOH) at the very specific time. Then the Current will gradually drop down. How fast the current drops at a certain step provides some clue on how good or bad the battery would like to stay in that NLV step. This way, one can allocate more step-time whenever the battery is keen to draw more Current, and less step-time when it attempts to drastically drop its drawing Current.
After every step, a very short relaxation with zero (0) Current is applied to the system to stabilize with its new charge and thus the OCV will drops to its stable (or almost stable) level. This creates a better chance [7, 8] for the next NLV charge-step to gain the optimal Current based on its status without imposing a high current beforehand. In this way, the protocol trains the cell to be stable and healthy (as much as possible, also without wasting much time on too long relaxation) after every step and better prepare it for the next step to gain more current than if it was done without the relaxation. But, if the amount of current-drop is not significant for a certain step, the system allows to stay longer in that step without moving to the next step. In this case, the rate of current-drop and a maximum allowed time for such continuation of a step is monitored to decide the time to move to the next step.
The system decides the “maximum allowed time for such continuation of a step” based on adaptation parameters. So, whenever a rapid drop of the current or exceeding of the “maximum allowed time for a step” is detected, the system moves to the next charging step. Therefore, the actual time it takes for a full-charge depends on both the SOC and SOH of the battery.
Further, the charging system takes three parameters to determine the end of charging. First, if the battery is fully charged based on the stated and gained capacities. The Second is if the maximum-target-end-voltage is reached. The “target-end-voltage” is adjusted automatically by the system based on the polarization data of the relevant battery type/chemistry. The Third, and optional, factor is a self-learning model of the charging profile to determine the state of charge based on the real-time parameters at the time (by examining for a certain window of time) of charging.
Also, a frequent relaxation has applied during this period. Similar situation can be seen at the end where the steps were frequently changed with multiple-relaxations, this is when the Drawn High Current is not that stable and tend to drop very rapidly.
[A] Discovery of Initial SOC
This is an optional process as the system depends on the SOC gain. Having this measured using any external methods will also help the system to improve its performance. Therefore, several methods have been explored to determine the initial SOC. The Thermodynamic based SOC prediction using fuzzy logic is one of the accurate and faster methods, which have been identified. Some other potential methods can also be found in literature in ref [11, 12]. So, the system not only caters the charging from 0% (SOC) to 100% (SOC) but also supports any partial charging. This initial SOC (if available) can also be used to determine the initial “K” value, with reference to
[B] Initialize ACP-NLV Charging
Initialization parameter of this protocol can be categorized in to two main sections:
[C] Apply CC [Constant Current] Charge for 3 Mins
If this mode is opted, a 3C Constant Current (CC) will be applied for a shorter period to leverage the battery toward fast-charging. The default period is 3 minutes, but both the CC current and this short period is configurable.
While CC charging, a relaxation [C. 1 REST, “0” current for a 1 step-time (CTS)] is applied after every 10th steps. Once, the CC based charging is completed, a longer relaxation (3 CTS) is applied before moving to the next Process.
[D] Initial-Frame. LV Based Charge
This step is used as the initialization/kick-start process for NLV charging. For the NLV process to calculate the next-non-linear-set-voltage, a frame of Current and Voltage values is required. Therefore, as a starting point, some other methods are needed for a very short period (1 frame duration) to charge the battery. This will also gain some capacity, which will push the battery away from the lower SOC stages where a high polarization is hindering the fast charging.
Therefore, any of the following methods are suitable for this kick-start:
To simplify the explanation, LSV has been used as the kick-start method:
V slope was taken as to charge the battery in 20 mins time [if ETD=20 mins]
[E] Update Data Frame (V. T T) & Capacity
Updating the Voltage (V), Current (I), and Temperature (T) should be done after every step. Therefore, for each step, the update is taken place just before triggering the next step. So, the current taken to calculate the Capacity gain is the minimum current during that CTS time frame (2 secs in default case). Further:
From “Update Path X,” every time the incoming/new reading will be stored as the next-element in the frame. As the “process D” will be continued only for CFS number of times, the frame will be completely filled with the completion of the “process D.”
From “Update Path Y,” every new/next reading will be stored as the last element of the frame. All its previous data will be pushed back from 1 position. So, every time the very first item of the frame will be wiped off.
VoltageFrame & CurrentFrame arrays will be filled to store the frame values and will be continuously updated during the charging process.
Updating the Capacity:
A simple method to calculate the SOC is to use the Coulomb counting in real time:
The default “Step-time” has set as 2 secs. So, whenever some Current draws by the battery, the relevant capacity gain will be calculated based on the above equation (C=I×t: Current×Time). Then it will be updated to the main capacity-gain. This will be used in the protocol to define the SOC, and subsequently to control over the parameters for changing SOC.
There is no capacity calculation during a relaxation step.
[F] Discover Next “Set-Voltage” based on NLV [Calculate Derivatives]
[G] Charge with NLV
[H] Manage Self-Trained “K” & GI1 Manage Step Time
Above equation is used to determine the NLV based Set Voltage at every single charge step. But the Kn is also changing based on a set of factors. Following are the main factors used to control it:
“Expected C-Rate: cRateExpected” to ensure fully charge, achieving the required amount of Capacity, within the Required time-duration.
Based on the users' preference/requirement on the “Charge Time” and the “Charge Capacity,” the system can calculate the minimum C-Rate (“Expected C-Rate”) that has to be maintained continuously or as the average during the entire period of charging. The protocol uses this information to control over the Kn and step time by comparing it with the C-Rate (“Real time C-Rate: cRateRealTime (CRRT)”) driven by the real-time-current in every charge step.
Whenever a high “Real time C-Rate” is drawn, the Kn kept as low as possible. And the Step-Time increases as much as possible. At the same time, it will not allow the “Step-Time” to exceed “maximum allowed time for a step” without applying the relaxation. But, if the system draws a high “Real time C-Rate” even after a relaxation, it allows the same Voltage-Step to continue until a “Considerable drop of Current” (this is a configurable parameter by the system) is identified. Then it will decide to move to the next voltage step.
“Elapsed Charge-Time: timeElapsedCharge” to ensure that the required charging is achieved within the expected time duration.
This will also work as a factor of the state of charge (SOC). When it reaches the end segments of the expected charging duration, the system will increase the charging frequency by reducing the Step-time and increases the Kn to a higher value to rapidly sweep through the non-linear voltage change.
But if the system draws a current of nearly or within the range of “Expected C-Rate,” the system will keep a nominal range of step-time and Kn value.
“C-Rate draining duration: timeWaitedForExpectedCRate” to try and push the system to get out of such high-resistant charging windows.
Whenever the system detects that the drawing Current at a certain Voltage step is way below the “Expected C-Rate” threshold, it will try to pass through that steps as quickly as possible. Therefore, the “Step-Time” will be reduced.
But, if this occurs at the very initial stage (at Low SOC), the Kn value will be largely increased to step-up the voltage from a large amount.
If it occurs toward the end of charge, the Kn value will kept at a moderate level as the can still have to charge to gain more capacity. Here the expectation of the “C-Rate” can drop down to a half of its full expectation as well.
When the “Step-Time” is reduced in this case, the system tries to speed-up sweeping through charge steps. So, in some cases, the drawn Current may again rise-up. But on other cases, it may remain at a lower C-Rate. In such lower cases, the Kn value will be set to a very high value until a considerably acceptable level of Current could be drawn by the battery. Whenever it start-back drawing high C-Rate current, the Kn value will be lowered, yet the “Step-Time” kept small to pass through this difficult period as fast as possible while gaining the maximum possible charging even within that period.
The control logic and the reference table, which were used for the reference protocol based on the above claims are as follows:
TABLE 1.1
Reference Table for different levels of ″cRateExpected″
Value for the Reference
Protocol shown in this
write-up
Expected C-Rate
[cRateExpected = 3C,
Threshold Levels
Value
to charge in 20 mins]
cRateExpectedO5 (CREO5)
cRateExpected + 80% * 1C
3.8 C
cRateExpectedO4 (CREO4)
cRateExpected + 60% * 1C
3.6 C
cRateExpectedO3 (CREO3)
cRateExpected + 30% * 1C
3.3 C
cRateExpectedO2 (CREO2)
cRateExpected + 10% * 1C
3.1 C
cRateExpectedO1 (CREO1)
cRateExpected
3.0 C
cRateExpectedL1 (CREL1)
cRateExpected − 50% * 1C
2.5 C
cRateExpectedL2 (CREL2)
cRateExpected − 90% * 1C
2.1 C
cRateExpectedL3 (CREL3)
cRateExpected − 130% * 1C
1.7 C
cRateExpectedL4 (CREL4)
cRateExpected − 150% * 1C
1.5 C
TABLE 1.2
Reference Table for different levels of ″nlvKValue_TrainedFactor″
Trained_KValueValue for the
Reference Protocol shown in
this write-up [cRateExpected =
3C, to charge in 20 mins]
NLV K-Value Training Factor Levels
Default K = 6.4322,
[Trained K Value = k_T]
Value
″trainedKValue″ as ″K″ below.
nlvKValue_TrainedFactorL1 (k_TFL1)
1/16
K = 0.4020125
nlvKValue_TrainedFactorL2 (k_TFL2)
1/14
K = 0.459442857142857
nlvKValue_TrainedFactorL3 (k_TFL3)
1/12
K = 0.536016666666667
nlvKValue_TrainedFactorL4 (k_TFL4)
1/10
K = 0.64322
nlvKValue_TrainedFactorL5 (k_TFL5)
1/9
K = 0.714688888888889
nlvKValue_TrainedFactorL6 (k_TFL6)
2/3
K = 4.288133333333333
nlvKValue_TrainedFactor (k_TF)
1
K = 6.4322
nlvKValue_TrainedFactorH1 (k_TFH1)
3/2
K = 9.6483
nlvKValue_TrainedFactorH2 (k_TFH2)
9
K = 57.8898
nlvKValue_TrainedFactorH3 (k_TFH3)
27/2 = 13.5
K = 86.8347
nlvKValue_TrainedFactorH4 (k_TFH4)
18
K = 115.7796
nlvKValue_TrainedFactorH5 (k_TFH5)
81/4 = 20.25
K = 130.2505
nlvKValue_TrainedFactorH6 (k_TFH6)
45/2 = 22.5
K = 144.7245
TABLE 1.3
Reference Table for different levels of ″timeWaitedForExpectedCRate″
Value for the Reference
Protocol shown
The
in this write-up
″timeWaitedForExpectedCRate″
Number
[cRateExpected = 3C,
Levels
of
to charge in 20 mins]
[t_WFECR]
Steps
1-Step Time = 2 secs
timeWaitedForExpectedCRate_1
5
10 secs
(t_WECR1)
timeWaitedForExpectedCRate_2
8
16 secs
(t_WECR2)
TABLE 1.4
Reference Table for different levels of ″timeElapsedCharge″
Value for the Reference
Protocol shown in
The
As a
this write-up
″timeElapsedCharge″
percentage
[cRateExpected = 3C,
stages
of SOC
to charge in 20 mins]
timeElapsedCharge_1 (tEC1)
20%
5 Mins
timeElapsedCharge_2 (tEC2)
60%
10 Mins
TABLE 1.5
Reference Table for different levels of ″stepTimeFactor″
Value for the Reference
Protocol shown in this write-up
[cRateExpected = 3C, to charge
The ″stepTimeFactor″ level
in 20 mins]
[t5T = time Step Time]
Value
StepTime [CTS] = 2 secs
stepTime_Factor_L1 (tSTFL1)
1/2
nlvStepSize = 1 secs
stepTime_Factor (tSTF)
1
nlvStepSize = 2 secs
stepTime_Factor_H1 (tSTFH1)
5
nlvStepSize = 10 secs
stepTime_Factor_H2 (tSTFH2)
8
nlvStepSize = 16 secs
stepTime_Factor_H3 (tSTFH3)
9
nlvStepSize = 18 secs
stepTime_Factor_H4 (tSTFH4)
10
nlvStepSize = 20 secs
stepTime_Factor_H5 (tSTFH5)
12
nlvStepSize = 24 secs
The flow in
As per the
Therefore, it is guaranteed that these parameters get adjusted based on the SOC & SOH of the battery, which causes the possible drawn Current to be different.
As illustrated by
Also when the C-Rate is high, the K-Value decreases. But the, K-Value decreases to a very low value only when the system tempt to draw a current, which has the C-Rate closer or above the expected C-Rate.
As illustrated by
As illustrated by
[J] Adjust the “Target End Voltage”
The idea of having an Adjustable “Target End Voltage” is to enhance the gain capacity depending on its SOC and SOH. Whenever the battery has a good SOH, a major part of the charge capacity can be drawn within a lover voltage range. So, the system sets a “Default Target End Voltage” as an exit point for the NLV charging at the beginning. Whenever the real-time-voltage of the battery reaches this “Default Target End Voltage,” the system checks the C-Rate driven by the real-time Current at that time. Then based on this C-Rate, the system determines whether to increase the “Target End Voltage” and continue charging or stop charging at this point. To determine this based on C-Rate, there are two methods considered in the protocol:
The Specific Polarization Profile based Acceptable “Target End Voltage”
The Default “Target End Voltage” Table
Following table 1.6 is used as the “Default End Voltage Table” for the reference protocol, which was explained here:
TABLE 1.6
The Default End Voltage
Table based on empirical data
Adjusted End Voltage
C-Rate of the Last Drawn
[when the Default
Current (Rounded to an Int)
″End Voltage″ = 4.65 V]
1C
4.65 V
2C
4.75 V
3C
4.85 V
Table 1.6, corresponds to the End Voltage values if the “Default End Voltage” was selected as 4.65 V. But this is again a customizable parameter where it can change under system/user preferences. Yet, it is intended to have a range for this based on the battery type/chemistry. Therefore, as a global control logic, handling the “Adjustable End Voltage” can be shown as below,
[K] Exit Criteria
There are three different criteria to decide on when to stop the charging process.
If the current profile closely matches with that of any previous current profiles seen during similar exit situations, the learning algorithm intends to improve on its exit profile. Depending on the availability of the above three methods, the same precedence as 1, 2 and 3 will be considered to decide on whether to exit.
[L] Manage REST
Managing the Rest is always applying zero (0) Current to the battery. The charge cycles will pass-over during this Rest period.
[M] Exit NLV
Once at least one criterium is made, the NLV charging will stop. But, depending on how much of a capacity-gain was reached, the system decides whether to go through another round of CC [with 2C constant current charging] or NLV again.
[N] Apply End-CC
Constant Current charging at 2C will be applied during 2 minutes at the end of NLV charging to gain further Capacity if the NLV driven capacity is not sufficient compared to the target. This Constant Current and its Duration is configurable as the system parameters.
With reference to
Alternatively, the CC protocol, the CCCV protocol and/or the Cascade Pulse Charging protocol (PCT application #PCT/IB2018/059705) can be applied at the beginning of, in the middle of and at the end of the NLV protocol according to the present disclosure.
Multi-Stage k-Value Management
The K-Value is changed based on how best the battery can draw the expected C-Rate of current of above. If, it draws very low C-Rate, the K-Value will be rapidly increasing to model a sudden hike in Voltage and subsequently results in high current. If it draws expected C-Rate or higher, the K-Value changed to a very low and try its best to gain the maximum possible charge with that high-current charging. On other cases, the K-value changed to maintain the expected C-Rate all the time, as much as possible.
A variation of K vs Time in a Logarithmic Scale is represented in
For NLV charging; the variation of “K-value” and SOC vs Time is represented in
The graph in
During the process,
The highlighted segment was further analyzed to envisage the workings in the protocol.
Analyzing around 100 samples from the highlighted section in
The A & B segments shown above have examined closely in the next section:
Above “B” segment shown in the rectangular frame in the following table.
The “AVG (Abs (dI/dt))” & “dV/dt” are calculated for respective Current & Voltage variations collected during the charging process.
Normalization factor
AVG
Abs
Abs
NLVSet
Prev
AVG
Selected K
K-Generated
(Abs(dl/dt))
[dl/dt(n − 1)]
[dl/dt(n − 2)]
dV/dt
Voltage
Voltage
|(dl/dt)| * dv/dt
0.39146667
0.391466667
223.5
141
306
0.043788218
4.772282
4.770823
0.391466667
0.39146667
0.391466667
223.5
141
306
0.043788218
4.772282
4.770823
0.391466667
0.39146667
0.391466667
75
9
141
0.130488889
4.776632
4.772282
0.391466667
0.39146667
0.391466667
75
9
141
0.130488889
4.776632
4.772282
0.391466667
0.39146667
0.391466667
286.8
564.6
9
0.034123663
4.77777
4.776632
0.391466667
0.39146667
0.391466667
286.8
564.6
9
0.034123663
4.77777
4.776632
0.391466667
0.39146667
0.239325867
339.6
114.6
564.6
0.017618218
4.778357
4.77777
0.239325867
0.39146667
0.239325867
339.6
114.6
564.6
0.017618218
4.778357
4.77777
0.239325867
0.39146667
0.353076267
154.8
195
114.6
0.057021361
4.780258
4.778357
0.353076267
0.39146667
0.353076267
154.8
195
114.6
0.057021361
4.780258
4.778357
0.353076267
0.39146667
0.391466667
127.2
59.4
195
0.076939203
4.782822
4.780258
0.391466667
0.39146667
0.391466667
127.2
59.4
195
0.076939203
4.782822
4.780258
0.391466667
0.39146667
0.391466667
139.8
220.2
59.4
0.070004769
4.785156
4.782822
0.391466667
0.39146667
0.391466667
139.8
220.2
59.4
0.070004769
4.785156
4.782822
0.391466667
1
2
3
4
5
6
FrameCurrent
FrameCurrent
FrameCurrent
FrameCurrent
FrameVoltage
FrameVoltage
Element 1
Element 2
Element 3
Element 4
Element 1
Element 2
1
2689.59
2683.65
2678.55
2676.2
4.76951
4.76966
2
2689.59
2683.65
2678.55
2676.2
4.76951
4.76966
3
2683.65
2678.55
2676.2
2676.35
4.76966
4.76974
4
2683.65
2678.55
2676.2
2676.35
4.76966
4.76974
5
2678.55
2676.2
2676.35
2685.76
4.76974
4.77075
6
2678.55
2676.2
2676.2
2685.76
4.76974
4.77075
7
2676.2
2676.35
2685.76
2683.85
4.77075
4.77222
8
2676.2
2676.35
2685.76
2683.85
4.77075
4.77222
9
2676.35
2685.76
2683.85
2680.6
4.77222
4.77661
10
2676.35
2685.76
2683.85
2680.6
4.77222
4.77661
11
2685.76
2683.85
2680.6
2681.59
4.77661
4.77773
12
2685.76
2683.85
2680.6
2681.59
4.77661
4.77773
13
2683.85
2680.6
2681.59
2685.26
4.77773
4.77835
14
2683.85
2680.6
2681.59
2685.26
4.77773
4.77835
As seen in the above table, the Current has dropped during this “B” segment, as shown in Row 10 Col 4. Therefore, both the dl & dv has shown a sudden hike or a drop. This has caused the multiplication precisions to make a deviation in their product.
Comparison of Charge Capacity & Usable Discharge Capacity
This is a very good advantage over other competitive Fast Charging methodologies, which are mostly based on directly imposing high current
With reference to
Yazami, Rachid, Bandara, Thannehene Gedara Thusitha Asela
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